The Stein-log-Sobolev inequality and the exponential rate of convergence for the continuous Stein variational gradient descent method
The Stein Variational Gradient Descent method is a variational inference method in statistics that has recently received a lot of attention. The method provides a deterministic approximation of the target distribution, by introducing a nonlocal interaction with a kernel. Despite the significant inte...
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Zusammenfassung: | The Stein Variational Gradient Descent method is a variational inference
method in statistics that has recently received a lot of attention. The method
provides a deterministic approximation of the target distribution, by
introducing a nonlocal interaction with a kernel. Despite the significant
interest, the exponential rate of convergence for the continuous method has
remained an open problem, due to the difficulty of establishing the related
so-called Stein-log-Sobolev inequality. Here, we prove that the inequality is
satisfied for each space dimension and every kernel whose Fourier transform has
a quadratic decay at infinity and is locally bounded away from zero and
infinity. Moreover, we construct weak solutions to the related PDE satisfying
exponential rate of decay towards the equilibrium. The main novelty in our
approach is to interpret the Stein-Fisher information, also called the squared
Stein discrepancy, as a duality pairing between $H^{-1}(\mathbb{R}^d)$ and
$H^{1}(\mathbb{R}^d)$, which allows us to employ the Fourier transform. We also
provide several examples of kernels for which the Stein-log-Sobolev inequality
fails, partially showing the necessity of our assumptions. |
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DOI: | 10.48550/arxiv.2412.10295 |